[Large language models in science].

IF 0.5 4区 医学 Q4 UROLOGY & NEPHROLOGY Urologie Pub Date : 2024-09-01 Epub Date: 2024-07-24 DOI:10.1007/s00120-024-02396-2
Karl-Friedrich Kowalewski, Severin Rodler
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Abstract

Objective: Large language models (LLMs) are gaining popularity due to their ability to communicate in a human-like manner. Their potential for science, including urology, is increasingly recognized. However, unresolved concerns regarding transparency, accountability, and the accuracy of LLM results still exist.

Research question: This review examines the ethical, technical, and practical challenges as well as the potential applications of LLMs in urology and science.

Materials and methods: A selective literature review was conducted to analyze current findings and developments in the field of LLMs. The review considered studies on technical aspects, ethical considerations, and practical applications in research and practice.

Results: LLMs, such as GPT from OpenAI and Gemini from Google, show great potential for processing and analyzing text data. Applications in urology include creating patient information and supporting administrative tasks. However, for purely clinical and scientific questions, the methods do not yet seem mature. Currently, concerns about ethical issues and the accuracy of results persist.

Conclusion: LLMs have the potential to support research and practice through efficient data processing and information provision. Despite their advantages, ethical concerns and technical challenges must be addressed to ensure responsible and trustworthy use. Increased implementation could reduce the workload of urologists and improve communication with patients.

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[科学中的大型语言模型]。
目的:大语言模型(LLMs)由于能够以类似人类的方式进行交流而越来越受欢迎。它们在包括泌尿学在内的科学领域的潜力正日益得到认可。然而,有关 LLM 结果的透明度、问责制和准确性的问题仍未得到解决:本综述探讨了 LLM 在伦理、技术和实践方面的挑战以及在泌尿学和科学领域的潜在应用:材料与方法:我们有选择性地进行了文献综述,以分析当前在 LLMs 领域的发现和发展。综述考虑了技术方面的研究、伦理方面的考虑以及在研究和实践中的实际应用:LLM(如 OpenAI 的 GPT 和 Google 的 Gemini)在处理和分析文本数据方面显示出巨大的潜力。在泌尿科的应用包括创建患者信息和支持行政任务。不过,对于纯粹的临床和科学问题,这些方法似乎还不成熟。目前,人们对伦理问题和结果准确性的担忧依然存在:LLM 有潜力通过高效的数据处理和信息提供为研究和实践提供支持。尽管有其优势,但必须解决伦理问题和技术挑战,以确保负责任和可信赖的使用。加大使用力度可以减轻泌尿科医生的工作量,改善与患者的沟通。
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来源期刊
Urologie
Urologie UROLOGY & NEPHROLOGY-
CiteScore
1.00
自引率
0.00%
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0
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